Big data clustering considering chaotic correlation dimension feature extraction

Shanshan Liu
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引用次数: 1

Abstract

The big traditional feature extraction method is not suitable for big data feature extraction, and the extraction efficiency is low; therefore, a new efficient extraction method of big data key features based on chaotic correlation dimension feature extraction is proposed. The feature set is evaluated by the local features of the sample, and the key features of big data are selected. Therefore, a big data clustering algorithm based on chaotic correlation feature extraction is proposed. The shortcomings of traditional methods are analyzed, and a multi-dimensional state space vector and chaotic trajectory are established by reconstructing the phase space, so that many geometric feature quantities in the original system remain unchanged, which provides an effective basis for analyzing the chaotic characteristics of the original system. The false nearest neighbor algorithm is used to select the best embedding dimension with the time delay indicated by the abscissa when the average mutual information amount is taken as the first minimum value taken as the optimal time delay for reconstructing the phase space. The feature quantity of the extracted correlation dimension is used as the chaotic feature quantity of big data clustering, and the big data is clustered according to the extracted chaotic correlation dimension feature.
基于混沌相关维数特征提取的大数据聚类
传统的大特征提取方法不适合大数据特征提取,提取效率低;为此,提出了一种基于混沌相关维数特征提取的大数据关键特征高效提取方法。通过样本的局部特征对特征集进行评估,选择大数据的关键特征。为此,提出了一种基于混沌相关特征提取的大数据聚类算法。分析了传统方法的不足,通过重构相空间建立了多维状态空间矢量和混沌轨迹,使原系统中的许多几何特征量保持不变,为分析原系统的混沌特性提供了有效依据。以互信息量平均值作为重构相空间的最优时延的第一个最小值,利用伪最近邻算法以横坐标表示的时延选择最佳嵌入维数。将提取的相关维数的特征量作为大数据聚类的混沌特征量,根据提取的混沌相关维数特征对大数据进行聚类。
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